基于改进ORB与MLESAC的图像拼接算法
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1.河北大学电子信息工程学院 保定 071002; 2.河北大学节能技术研发中心 保定 071002; 3.河北大学网络空间安全与计算机学院 保定 071002; 4.河北大学中央兰开夏传媒与创意学院 保定 071002; 5.河北大学物联网智能技术研究中心 保定 071002

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TN98;TP11

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国家自然科学基金(62373132)、河北省自然科学基金(F2025201023)、石家庄市驻冀高校基础研究项目(241791367A)、河北大学优秀青年科研创新团队建设项目(QNTD202411)、河北大学多学科交叉研究计划项目(DXK202409)资助


Image stitching algorithm based on improved ORB and MLESAC
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1.School of Electronic Informational Engineering, Hebei University,Baoding 071002, China;2.Laboratory of EnergySaving Technology, Hebei University,Baoding 071002, China; 3.School of Cyber Security and Computer, Hebei University, Baoding 071002, China; 4.HBU-UCLAN School of Media, Communication and Creative Industries, Hebei University, Baoding 071002, China; 5.Laboratory of IoT Technology, Hebei University,Baoding 071002, China

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    摘要:

    针对现有图像拼接算法在复杂场景下匹配精度不足与实时性受限的问题,提出一种基于改进ORB与MLESAC的图像拼接算法。传统拼接方法在光照突变、视角变换及复杂背景干扰下,存在特征检测鲁棒性弱、描述子区分能力不足等问题,易导致匹配错误进而引发拼接错位或重影。为此,本文在预处理阶段,将输入图像转换至CIE Lab空间,实现亮度与色彩通道解耦,结合信息熵与光照统计构建自适应图像金字塔;特征检测与描述阶段,设计光照自适应FAST角点阈值调节机制,引入局部几何约束筛选角点,并将BRIEF描述符扩展至L、a、b三通道,融合局部梯度方向信息;特征匹配阶段,采用双向汉明距离匹配,构建局部与全局相结合的约束优化框架,最小化重投影误差。然后,利用更高效的MLESAC算法剔除错误匹配。最终采用加权平均法对拼接区域进行平滑处理,实现无缝拼接效果。实验结果表明:改进后的算法在处理复杂场景下的图像拼接任务中,可以保证实时性与高精度的全景拼接质量。改进后的算法在APAP Dataset上的匹配精度达到97.63%。

    Abstract:

    Aiming at the problems of low matching accuracy and poor real-time performance of existing image stitching algorithms in complex scenes, this paper proposes an image stitching algorithm based on improved ORB and MLESAC. In traditional image stitching approaches, feature detection exhibits insufficient robustness, and descriptors lack discriminative power under conditions of abrupt illumination changes, viewpoint variations or complex background interference. This deficiency readily induces mismatching errors, ultimately leading to stitching misalignments or ghosting artifacts.Thus, in the preprocessing stage of this paper, the input image is transformed into CIE Lab color space to decompose brightness and color channels, and an adaptive image pyramid is constructed by integrating information entropy with illumination statistics.In the feature detection and description stage, a lighting-adaptive FAST corner threshold adjustment mechanism is designed. Subsequently, local geometric constraints are introduced to filter corner points, and the BRIEF descriptor is extended to the L, a and b channels of the CIE Lab color space, thereby fusing local gradient direction information.In the feature matching stage, bidirectional Hamming distance matching is employed to establish a local-global constraint optimization framework for minimizing reprojection error. Subsequently, a more efficient MLESAC algorithm is employed to remove incorrect matches.Finally, a weighted average method is adopted to smooth the stitching area, achieving a seamless stitching effect.Experimental results demonstrate that the proposed algorithm can guarantee real-time performance and high-precision panoramic stitching quality when processing image stitching tasks in complex scenes. Specifically, on the APAP Dataset, the algorithm achieved a matching accuracy of 97.63%.

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冉宁,马骐骥,张少康,郝晋渊.基于改进ORB与MLESAC的图像拼接算法[J].电子测量技术,2026,49(5):219-228

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  • 在线发布日期: 2026-05-08
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